Feb. 13, 2024, 5:44 a.m. | Maria Lyssenko Christoph Gladisch Christian Heinzemann Matthias Woehrle Rudolph Triebel

cs.LG updates on arXiv.org arxiv.org

Safety is of utmost importance for perception in automated driving (AD). However, a prime safety concern in state-of-the art object detection is that standard evaluation schemes utilize safety-agnostic metrics to argue sufficient detection performance. Hence, it is imperative to leverage supplementary domain knowledge to accentuate safety-critical misdetections during evaluation tasks. To tackle the underspecification, this paper introduces a novel credibility metric, called c-flow, for pedestrian bounding boxes. To this end, c-flow relies on a complementary optical flow signal from image …

art automated cs.cv cs.lg detection domain domain knowledge driving evaluation flow importance knowledge metrics pedestrian perception performance prime safety safety-critical standard state tasks

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